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Development of artificial intelligence tools for invasive Doppler-based coronary microvascular assessment

Authors :
Henry Seligman
Sapna B Patel
Anissa Alloula
James P Howard
Christopher M Cook
Yousif Ahmad
Guus A de Waard
Mauro Echavarría Pinto
Tim P van de Hoef
Haseeb Rahman
Mihir A Kelshiker
Christopher A Rajkumar
Michael Foley
Alexandra N Nowbar
Samay Mehta
Mathieu Toulemonde
Meng-Xing Tang
Rasha Al-Lamee
Sayan Sen
Graham Cole
Sukhjinder Nijjer
Javier Escaned
Niels Van Royen
Darrel P Francis
Matthew J Shun-Shin
Ricardo Petraco
Source :
European Heart Journal - Digital Health.
Publication Year :
2023
Publisher :
Oxford University Press (OUP), 2023.

Abstract

Aims Coronary flow reserve (CFR) assessment has proven clinical utility, but Doppler-based methods are sensitive to noise and operator bias, limiting their clinical applicability. The objective of the study is to expand the adoption of invasive Doppler CFR, through the development of artificial intelligence (AI) algorithms to automatically quantify coronary Doppler quality and track flow velocity. Methods and results A neural network was trained on images extracted from coronary Doppler flow recordings to score signal quality and derive values for coronary flow velocity and CFR. The outputs were independently validated against expert consensus. Artificial intelligence successfully quantified Doppler signal quality, with high agreement with expert consensus (Spearman’s rho: 0.94), and within individual experts. Artificial intelligence automatically tracked flow velocity with superior numerical agreement against experts, when compared with the current console algorithm [AI flow vs. expert flow bias −1.68 cm/s, 95% confidence interval (CI) −2.13 to −1.23 cm/s, P < 0.001 with limits of agreement (LOA) −4.03 to 0.68 cm/s; console flow vs. expert flow bias −2.63 cm/s, 95% CI −3.74 to −1.52, P < 0.001, 95% LOA −8.45 to −3.19 cm/s]. Artificial intelligence yielded more precise CFR values [median absolute difference (MAD) against expert CFR: 4.0% for AI and 7.4% for console]. Artificial intelligence tracked lower-quality Doppler signals with lower variability (MAD against expert CFR 8.3% for AI and 16.7% for console). Conclusion An AI-based system, trained by experts and independently validated, could assign a quality score to Doppler traces and derive coronary flow velocity and CFR. By making Doppler CFR more automated, precise, and operator-independent, AI could expand the clinical applicability of coronary microvascular assessment.

Details

ISSN :
26343916
Database :
OpenAIRE
Journal :
European Heart Journal - Digital Health
Accession number :
edsair.doi...........48e47aa6fd8e881402079fd94fc64477
Full Text :
https://doi.org/10.1093/ehjdh/ztad030